Exploring Deep Learning for the Analysis of Emotional Reactions to Terrorist Events on Twitter

Karin Becker, Jonathas G. D. Harb, Régis Ebeling
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引用次数: 12

Abstract

Terrorist events have a substantial emotional impact on the population, and understanding these effects is very important to design effective assistance programs. However, investigating community-wide traumas is a complex and costly task, where most challenges are related to the data collection process. Social media has been used as a relevant source of data to investigate people’s sentiments and ideas. In this article, we study the emotional reactions of Twitter users regarding two terrorist events that occurred in the United Kingdom. The contributions are twofold: a) we experiment two deep learning architectures to develop an emotion classifier, and b) we develop an analysis on tweets related to terrorist events to underst and whether there is an emotional shift due to a terrorist attack andwhether the emotional reactions are dependent on the event, or on the demographics of the users. Both models, based on convolutional and recurrent neural architectures, presented very similar performances. The analyses revealed an emotion shift due to the events and a difference in the reactions to each specific event, where gender is the most significant factor.
探索深度学习分析Twitter上对恐怖事件的情绪反应
恐怖主义事件对人们的情绪有重大影响,了解这些影响对于设计有效的援助计划非常重要。然而,调查整个社区的创伤是一项复杂而昂贵的任务,其中大多数挑战与数据收集过程有关。社交媒体被用作调查人们情绪和想法的相关数据来源。在这篇文章中,我们研究了Twitter用户对发生在英国的两起恐怖事件的情绪反应。贡献是双重的:a)我们实验了两个深度学习架构来开发情感分类器,b)我们对与恐怖事件相关的推文进行了分析,以了解恐怖袭击是否会导致情绪转变,以及情绪反应是否取决于事件,还是取决于用户的人口统计数据。这两种基于卷积和递归神经结构的模型表现出非常相似的性能。分析显示,由于事件和对每个特定事件的不同反应,情绪会发生变化,其中性别是最重要的因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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